Evolutionary Discrete Multi-Material Topology Optimization Using CNN-Based Simulation Without Labeled Training Data

Xingtong Yang, Ming Li, Liangchao Zhu, Weidong Zhong
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Abstract

Multi-material topology optimization problem under total mass constraint is a challenging problem owning to the incompressibility constraint on the summation of the usage of the total materials. A novel optimization approach is proposed here that utilizes the wide search space of the genetic algorithm, and greatly reduced computational effects achieved from the direct structure-performance mapping. The former optimization is carefully designed based on our recent theoretical insights, while the latter simulation is derived via a novel convolutional neural network based simulation which does not rely on any labeled simulation data but is instead designed based on a physics-informed loss function. As compared with results obtained using latest approach based on density interpolation, structures of better compliances are observed under acceptable computational costs, as demonstrated by our numerical examples.
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基于cnn的无标记训练数据模拟的进化离散多材料拓扑优化
总质量约束下的多材料拓扑优化问题是一个具有挑战性的问题,因为总材料用量总和存在不可压缩性约束。本文提出了一种新的优化方法,利用遗传算法的宽搜索空间,大大降低了直接结构-性能映射的计算效果。前一种优化是根据我们最近的理论见解精心设计的,而后一种模拟是通过一种新颖的基于卷积神经网络的模拟推导出来的,该模拟不依赖于任何标记的模拟数据,而是基于物理信息损失函数设计的。数值算例表明,与基于密度插值的最新方法相比,在可接受的计算成本下,得到了更好的柔度结构。
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